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Reconstruction of multicontrast MR images through deep learning

机译:通过深度学习重建MultiContrast MR图像

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Purpose Magnetic resonance (MR) imaging with a long scan time can lead to degraded images due to patient motion, patient discomfort, and increased costs. For these reasons, the role of rapid MR imaging is important. In this study, we propose the joint reconstruction of multicontrast brain MR images from down‐sampled data to accelerate the data acquisition process using a novel deep‐learning network. Methods Twenty‐one healthy volunteers (female/male?=?7/14, age?=?26?±?4?yr, range 22–35?yr) and 16 postoperative patients (female/male?=?7/9, age?=?49?±?9?yr, range 37–62?yr) were scanned on a 3T whole‐body scanner for prospective and retrospective studies, respectively, using both T1‐weighted spin‐echo (SE) and T2‐weighted fast spin‐echo (FSE) sequences. We proposed a network which we term “X‐net” to reconstruct both T1‐ and T2‐weighted images from down‐sampled images as well as a network termed “Y‐net” which reconstructs T2‐weighted images from highly down‐sampled T2‐weighted images and fully sampled T1‐weighted images. Both X‐net and Y‐net are composed of two concatenated subnetworks. We investigate optimal sampling patterns, the optimal patch size for augmentation, and the optimal acceleration factors for network training. An additional Y‐net combined with a generative adversarial network (GAN) was also implemented and tested to investigate the effects of the GAN on the Y‐net performance. Single‐ and joint‐reconstruction parallel‐imaging and compressed‐sensing algorithms along with a conventional U‐net were also tested and compared with the proposed networks. For this comparison, the structural similarity (SSIM), normalized mean square error (NMSE), and Fréchet inception distance (FID) were calculated between the outputs of the networks and fully sampled images. The statistical significance of the performance was evaluated by assessing the interclass correlation and in paired t‐tests. Results The outputs from the two concatenated subnetworks were closer to the fully sampled images compared to those from one subnetwork, with this result showing statistical significance. Uniform down‐sampling led to a statically significant improvement in the image quality compared to random or central down‐sampling patterns. In addition, the proposed networks provided higher SSIM and NMSE values than U‐net, compressed‐sensing, and parallel‐imaging algorithms, all at statistically significant levels. The GAN‐based Y‐net showed a better FID and more realistic images compared to a non‐GAN‐based Y‐net. The performance capabilities of the networks were similar between normal subjects and patients. Conclusions The proposed X‐net and Y‐net effectively reconstructed full images from down‐sampled images, outperforming the conventional parallel‐imaging, compressed‐sensing and U‐net methods and providing more realistic images in combination with a GAN. The developed networks potentially enable us to accelerate multicontrast anatomical MR imaging in routine clinical studies including T1‐and T2‐weighted imaging.
机译:目的磁共振(MR)成像长扫描时间可以导致由于患者运动,患者不适,并且成本增加而导致的图像降低。由于这些原因,快速MR成像的作用很重要。在这项研究中,我们提出了从下采样数据的多数量大脑MR图像的联合重建,以加速使用新颖的深度学习网络来加速数据采集过程。方法二十一名健康志愿者(女性/男/男性?=?7/14,年龄?=?26?±±4?YR,范围22-35?YR)和16名术后患者(女性/男性?=?7/9 ,年龄?=?49?±9?在3T全身扫描仪上扫描3尺37-62°,分别用于前瞻性和回顾性研究,使用T1加权旋转回波(SE)和T2 - 重量快速旋转回波(FSE)序列。我们提出了一个网络,我们术语“X-NET”术语来重建从下采样图像的T1-和T2加权图像以及被称为“Y-NET”的网络,该网络从高度下样的T2重建T2加权图像 - 重量的图像和完全采样的T1加权图像。 X-Net和Y-Net都是由两个连接的子网组成。我们调查了最佳采样模式,增强的最佳补丁尺寸以及网络培训的最佳加速因子。还实施了额外的Y-Net与生成的对抗网络(GAN)进行了实施和测试,以调查GaN对Y净性能的影响。还测试了单次和关节重建并联成像和压缩传感算法以及传统的U-Net并与所提出的网络进行比较。对于该比较,在网络的输出和完全采样图像的输出之间计算结构相似性(SSIM),归一化均方误差(NMSE)和FRéchet初始距离(FID)。通过评估杂类相关性和成对的T检验来评估性能的统计学意义。结果,与一个子网相比,两个连接子网的输出更接近完全采样的图像,这结果显示了统计显着性。与随机或中央羽绒采样模式相比,均匀的下采样导致图像质量的静态显着改善。另外,所提出的网络提供比U-Net,压缩感和并行成像算法更高的SSIM和NMSE值,所有这些都是统计上显着的级别。与非GaN的Y网相比,基于GaN的Y-Net显示了更好的FID和更现实的图像。网络之间的性能能力在正常受试者和患者之间具有相似。结论所提出的X-NET和Y-NET有效地从下采样图像中重建了完全图像,优于传统的并行成像,压缩感和U-NET方法,并与GAN组合提供更现实的图像。开发网络可能使我们能够在包括T1和T2加权成像的常规临床研究中加速多程度解剖MR成像。

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